Description
Large software tend to have a large number of configuration options that can be tuned to a varying degree in order to run the software in a specific way. These configuration options cause a change in the execution of the

Large software tend to have a large number of configuration options that can be tuned to a varying degree in order to run the software in a specific way. These configuration options cause a change in the execution of the software, and therefore affect the code coverage of the software. This gives rise to the problem of understanding how much a certain configuration change affects the code coverage of the software in a measurable way. It also raises the question of effectively mapping code coverage to a configuration change. Solutions to these problems could give way to increasing efficiency in various areas of software security, like maximizing code coverage in fuzz testing and vulnerability identification in specific configurations.In this work, I perform analyze widely used software, such as the database cache `Redis' and web servers like `Nginx' and `Apache httpd'. I perform fuzz tests on multiple configurations of each of these software to measure the difference in code coverage caused by each configuration. I use Coverage Instrumentation to obtain traces for each software in their configurations, and then I analyze these traces to understand the configuration's impact on the software's code coverage. In conclusion, I describe a method to measure how much code coverage differs for each configuration with respect to the default configuration of the software, and how certain configurations have a much larger difference in code coverage with respect to the default configuration than others, analyze the overlap in code coverage between the configurations and finally find the root causes of the differing code coverage.
Reuse Permissions
  • Downloads
    pdf (1022.3 KB)

    Details

    Title
    • Analyzing the Impact of Software Configurations on Dynamic Code Coverage
    Contributors
    Date Created
    2023
    Resource Type
  • Text
  • Collections this item is in
    Note
    • Partial requirement for: M.S., Arizona State University, 2023
    • Field of study: Computer Science

    Machine-readable links